Listing Thumbnail

    Build a Cloud Lakehouse on AWS

     Info
    Sold by: CloudZone 
    As data volumes grow, moving all this data around becomes a challenge, due to data gravity. To achieve agility in decision making, modern companies need to use a central data lake surrounded by purpose-built datastores and be able to move data between them seamlessly and in a secure and governed way. Such data movement also needs to ensure compliance with data access management and monitoring, and it all needs to happen without compromising performance or cost performance. A modern approach to data and analytics is known as lakehouse architecture. CloudZone’s Build a Cloud Lakehouse on AWS is exactly what its name suggests - a comprehensive offering to help our customers easily build and start working with a Cloud lakehouse on AWS.
    Listing Thumbnail

    Build a Cloud Lakehouse on AWS

     Info
    Sold by: CloudZone 

    Overview

    Unlock the power of your data, with a modern Cloud lakehouse architecture on AWS

    Companies look to leverage their data to drive better decisions, as quickly as possible. Doing so quickly often requires moving all of their data located in various silos to be moved to a single location, often referred to as a ‘data lake’, from where they can perform analytics and ML. In parallel, companies also store data in purpose-built datastores that support specific use cases with relevant performance, scale and cost advantages; for example data warehouses offer optimized complex analytics on structured data, Elasticsearch is suitable for search or log analysis applications.

    A single datastore is no longer sufficient, to maximize the value of data and these purpose-built datastores, companies need to be able to easily and seamlessly move data between them. For example, real-time bidding data can be stored in a data lake, and a portion of it can be moved to a data warehouse for reporting, or leveraged by an ML platform as a dataset for training. Sometimes, there is a need to move data in the other direction, Such as, moving datahouse analytics results to the data lake to train product recommendation ML models. Finally, there may be a need to move data directly between these purpose-built datastores. For example, copying catalog data from a relational operational database to a search service to enable super-fast text based search while offloading it from the database.

    Lakehouse architecture supports common use cases: ⏩ E-commerce: Usage analytics, search services, analyze & predict user intent from clickstream data ⏩ Ad-Tech: Measure campaign effectiveness and train ML models to better target bidding ⏩ Finance: Real-time reports and continuous training of models for better fraud detection ⏩ Manufacturing: Real-time insights from mass IoT data and predictive maintenance models

    Adopting lakehouse architecture for the above sample use cases enables these organizations to enrich their product offerings, reduce time to market, increase cost-performance and address new markets and customers.

    We can help you, wherever you are at with your implementation:

    • New to Data Lake -Customers with no data lake but existing data sources who are ready to modernize their analytics capabilities.
    • Existing Data Lake-Customers who are already using a data lake and want to shift to a lakehouse architecture.
    • Open Lakehouse Engine-Customers who are ready to implement a Cloud data lakehouse with Upsolver, for more features and use cases.

    Highlights

    • Delivery Process: 1. Discovery 2. Assessment 3. Planing 4. Implementation 5 .Traning
    • Common services used for the offering: Lake Formation, Amazon Athena, Amazon Kinesis, Redshift, Amazon S3, AWS Glue.

    Details

    Delivery method

    Pricing

    Custom pricing options

    Pricing is based on your specific requirements and eligibility. To get a custom quote for your needs, request a private offer.

    How can we make this page better?

    We'd like to hear your feedback and ideas on how to improve this page.
    We'd like to hear your feedback and ideas on how to improve this page.

    Legal

    Content disclaimer

    Vendors are responsible for their product descriptions and other product content. AWS does not warrant that vendors' product descriptions or other product content are accurate, complete, reliable, current, or error-free.

    Support

    Vendor support

    CloudZone provide 24/7 support by our interanl cloud proffesional team, please contact at: support@cloudzone.io